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Papers/Unsupervised Learning using Pretrained CNN and Associative...

Unsupervised Learning using Pretrained CNN and Associative Memory Bank

Qun Liu, Supratik Mukhopadhyay

2018-05-02Image ClassificationObject RecognitionFew-Shot Image ClassificationFine-Grained Image ClassificationSemi-Supervised Image Classification
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Abstract

Deep Convolutional features extracted from a comprehensive labeled dataset, contain substantial representations which could be effectively used in a new domain. Despite the fact that generic features achieved good results in many visual tasks, fine-tuning is required for pretrained deep CNN models to be more effective and provide state-of-the-art performance. Fine tuning using the backpropagation algorithm in a supervised setting, is a time and resource consuming process. In this paper, we present a new architecture and an approach for unsupervised object recognition that addresses the above mentioned problem with fine tuning associated with pretrained CNN-based supervised deep learning approaches while allowing automated feature extraction. Unlike existing works, our approach is applicable to general object recognition tasks. It uses a pretrained (on a related domain) CNN model for automated feature extraction pipelined with a Hopfield network based associative memory bank for storing patterns for classification purposes. The use of associative memory bank in our framework allows eliminating backpropagation while providing competitive performance on an unseen dataset.

Results

TaskDatasetMetricValueModel
Image ClassificationCIFAR-10Percentage correct83.1UL-Hopfield (ULH)
Image ClassificationCIFAR100 5-way (1-shot)Accuracy89.6UL-Hopfield (ULH)
Image ClassificationCaltech-256 5-way (1-shot)Accuracy74.7UL-Hopfield (ULH)
Image ClassificationCaltech-101Accuracy91UL-Hopfield (ULH)
Image ClassificationCIFAR-10, 40 LabelsPercentage error16.9UL-Hopfield (ULH)
Fine-Grained Image ClassificationCaltech-101Accuracy91UL-Hopfield (ULH)
Few-Shot Image ClassificationCIFAR100 5-way (1-shot)Accuracy89.6UL-Hopfield (ULH)
Few-Shot Image ClassificationCaltech-256 5-way (1-shot)Accuracy74.7UL-Hopfield (ULH)
Semi-Supervised Image ClassificationCIFAR-10, 40 LabelsPercentage error16.9UL-Hopfield (ULH)

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